可修复性指数:用于估计手动编辑感兴趣对象的自动分割所需的工作量的新度量。

Da He, Jayaram K Udupa, Yubing Tong, Drew A Torigian
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引用次数: 1

摘要

医学图像的自动分割对于提高精确放射学和放射肿瘤学效率至关重要,从而提高医疗保健从业者和患者的医疗质量。一个适当的度量来评估自动分割结果是建立一个有效的、鲁棒的和实用的自动分割技术的重要工具之一。然而,将预测的分割结果与实际情况进行比较,目前广泛使用的度量标准通常关注重叠区域(Dice系数)或边界最严重的移动(Hausdorff Distance),这似乎与人类读者的行为不一致。人类读者通常会验证和纠正自动分割轮廓,然后应用修改后的分割掩码来指导临床在诊断或治疗中的应用。提出了一种称为可修复性指数(MI)的度量,以更好地估计手动编辑医学图像中感兴趣对象的自动分割所需的工作量,从而使分割为手头的应用程序所接受。考虑到人类对不同错误的不同行为,MI将自动分割错误分为三种类型,并具有不同的定量行为。505个三维计算机断层扫描(CT)自动分割由3个机构的6个物体组成,具有相应的基础真理和专家所需的手工修复时间记录,用于验证所提出的MI的性能。编辑时间与分割指标之间的相关性表明MI通常比Dice系数或更适合用于指示修复努力Hausdorff距离,提示心肌梗死可能是量化自动分割临床价值的有效指标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mendability Index: A new metric for estimating the effort required for manually editing auto-segmentations of objects of interest.

Auto-segmentation of medical images is critical to boost precision radiology and radiation oncology efficiency, thereby improving medical quality for both health care practitioners and patients. An appropriate metric to evaluate auto-segmentation results is one of the significant tools necessary for building an effective, robust, and practical auto-segmentation technique. However, by comparing the predicted segmentation with the ground truth, currently widely-used metrics usually focus on the overlapping area (Dice Coefficient) or the most severe shifting of the boundary (Hausdorff Distance), which seem inconsistent with human reader behaviors. Human readers usually verify and correct auto-segmentation contours and then apply the modified segmentation masks to guide clinical application in diagnosis or treatment. A metric called Mendability Index (MI) is proposed to better estimate the effort required for manually editing the auto-segmentations of objects of interest in medical images so that the segmentations become acceptable for the application at hand. Considering different human behaviors for different errors, MI classifies auto-segmented errors into three types with different quantitative behaviors. The fluctuation of human subjective delineation is also considered in MI. 505 3D computed tomography (CT) auto-segmentations consisting of 6 objects from 3 institutions with the corresponding ground truth and the recorded manual mending time needed by experts are used to validate the performance of the proposed MI. The correlation between the time for editing with the segmentation metrics demonstrates that MI is generally more suitable for indicating mending efforts than Dice Coefficient or Hausdorff Distance, suggesting that MI may be an effective metric to quantify the clinical value of auto-segmentations.

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